Dense visual-inertial odometry for tracking of aggressive motions

Yonggen Ling, S. Shen
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引用次数: 10

Abstract

We propose a sliding window-based dense visual-inertial fusion method for real-time tracking of challenging aggressive motions. Our method combines recent advances in direct dense visual odometry, inertial measurement unit (IMU) preintegration, and graph-based optimization. At the front-end, direct dense visual odometry provides camera pose tracking that is resistant to motion blur. At the back-end, a sliding window optimization-based fusion framework with efficient IMU preintegration generates smooth and high-accuracy state estimates, even with occasional visual tracking failures. A local loop closure that is integrated into the back-end further eliminates drift after extremely aggressive motions. Our system runs real-time at 25 Hz on an off-the-shelf laptop. Experimental results show that our method is able to accurately track motions with angular velocities up to 1000 degrees/s and velocities up to 4 m/s. We also compare our method with state-of-the-art systems, such as Google Tango, and show superior performance during challenging motions. We show that our method achieves reliable tracking results, even if we throw the sensor suite during experiments.
用于跟踪攻击运动的密集视觉惯性里程计
提出了一种基于滑动窗口的密集视觉惯性融合方法,用于具有挑战性的攻击运动的实时跟踪。我们的方法结合了直接密集视觉里程计、惯性测量单元(IMU)预积分和基于图的优化的最新进展。在前端,直接密集视觉里程计提供相机姿态跟踪,是抵抗运动模糊。在后端,基于滑动窗口优化的融合框架与有效的IMU预集成产生平滑和高精度的状态估计,即使偶尔有视觉跟踪失败。集成到后端的局部闭环进一步消除了极端剧烈运动后的漂移。我们的系统在一台现成的笔记本电脑上以25赫兹的频率实时运行。实验结果表明,该方法能够准确跟踪角速度高达1000度/秒、速度高达4米/秒的运动。我们还将我们的方法与最先进的系统(如Google Tango)进行了比较,并在具有挑战性的动作中显示出卓越的性能。实验结果表明,即使在实验过程中丢弃传感器套件,我们的方法也能获得可靠的跟踪结果。
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